Moving object detection is low-level, important task for any visual surveillance system. One of the aim of this paper is to, to describe various approaches of moving object detection such as background subtraction, temporal difference, as well as pros and cons of these techniques. A statistical mean technique [10] has been used to overcome the problem in previous techniques. Even statistical mean method also suffers with the problem of superfluous effects of foreground objects. In this paper, the presented method tries to overcome this effect as well as reduces the computational complexity up to some extent. In this paper, a robust algorithm for automatic, noise detection and removal from moving objects in video sequences is presented. The algorithm considers static camera parameters.
CITATION STYLE
Vahora, S. (2012). A Robust Method for Moving Object Detection Using Modified Statistical Mean Method. International Journal of Advanced Information Technology, 2(1), 65–73. https://doi.org/10.5121/ijait.2012.2106
Mendeley helps you to discover research relevant for your work.